| Literature DB >> 26354123 |
Weizhe Hong1, Ann Kennedy2, Xavier P Burgos-Artizzu3, Moriel Zelikowsky2, Santiago G Navonne3, Pietro Perona4, David J Anderson1.
Abstract
A lack of automated, quantitative, and accurate assessment of social behaviors in mammalian animal models has limited progress toward understanding mechanisms underlying social interactions and their disorders such as autism. Here we present a new integrated hardware and software system that combines video tracking, depth sensing, and machine learning for automatic detection and quantification of social behaviors involving close and dynamic interactions between two mice of different coat colors in their home cage. We designed a hardware setup that integrates traditional video cameras with a depth camera, developed computer vision tools to extract the body "pose" of individual animals in a social context, and used a supervised learning algorithm to classify several well-described social behaviors. We validated the robustness of the automated classifiers in various experimental settings and used them to examine how genetic background, such as that of Black and Tan Brachyury (BTBR) mice (a previously reported autism model), influences social behavior. Our integrated approach allows for rapid, automated measurement of social behaviors across diverse experimental designs and also affords the ability to develop new, objective behavioral metrics.Entities:
Keywords: behavioral tracking; depth sensing; machine vision; social behavior; supervised machine learning
Mesh:
Year: 2015 PMID: 26354123 PMCID: PMC4586844 DOI: 10.1073/pnas.1515982112
Source DB: PubMed Journal: Proc Natl Acad Sci U S A ISSN: 0027-8424 Impact factor: 11.205